D-Wave quantum annealers represent a novel computational architecture and have attracted significant interest. Much of this interest has focused on the quantum behavior of D-Wave machines, and there have been few practical algorithms that use the D-Wave. Machine learning has been identified as an area where quantum annealing may be useful. Here, we show that the D-Wave 2X can be effectively used as part of an unsupervised machine learning method. This method takes a matrix as input and produces two low-rank matrices as output-one containing latent features in the data and another matrix describing how the features can be combined to approximately reproduce the input matrix. Despite the limited number of bits in the D-Wave hardware, this met...
Quantum Machine learning is a promising technology that is related to the study of computing. Due to...
Quantum annealing is getting increasing attention in combinatorial optimization. The quantum process...
Training deep learning networks is a difficult task due to computational complexity, and this is tra...
D-Wave quantum annealers represent a novel computational architecture and have attracted significant...
Abstract Classical computing has borne witness to the development of machine learning. The integrati...
Classical computing has borne witness to the development of machine learning. The integration of qua...
Quantum annealers, such as the device built by D-Wave Systems, Inc., offer a way to compute solution...
Quantum annealers, such as the device built by D-Wave Systems, Inc., offer a way to compute solution...
Kernel-based support vector machines (SVMs) are supervised machine learning algorithms for classific...
We present an algorithm for quantum-assisted cluster analysis that makes use of the topological prop...
Several problem in Artificial Intelligence and Pattern Recognition are computationally intractable d...
Abstract Quantum annealing was originally proposed as an approach for solving combinatorial optimiza...
In this paper, we propose a methodology to solve the stereo matching problem through quantum anneali...
Several problem in Artificial Intelligence and Pattern Recognition are computationally intractable d...
Restricted Boltzmann Machine (RBM) is an energy-based, undirected graphical model. It is commonly us...
Quantum Machine learning is a promising technology that is related to the study of computing. Due to...
Quantum annealing is getting increasing attention in combinatorial optimization. The quantum process...
Training deep learning networks is a difficult task due to computational complexity, and this is tra...
D-Wave quantum annealers represent a novel computational architecture and have attracted significant...
Abstract Classical computing has borne witness to the development of machine learning. The integrati...
Classical computing has borne witness to the development of machine learning. The integration of qua...
Quantum annealers, such as the device built by D-Wave Systems, Inc., offer a way to compute solution...
Quantum annealers, such as the device built by D-Wave Systems, Inc., offer a way to compute solution...
Kernel-based support vector machines (SVMs) are supervised machine learning algorithms for classific...
We present an algorithm for quantum-assisted cluster analysis that makes use of the topological prop...
Several problem in Artificial Intelligence and Pattern Recognition are computationally intractable d...
Abstract Quantum annealing was originally proposed as an approach for solving combinatorial optimiza...
In this paper, we propose a methodology to solve the stereo matching problem through quantum anneali...
Several problem in Artificial Intelligence and Pattern Recognition are computationally intractable d...
Restricted Boltzmann Machine (RBM) is an energy-based, undirected graphical model. It is commonly us...
Quantum Machine learning is a promising technology that is related to the study of computing. Due to...
Quantum annealing is getting increasing attention in combinatorial optimization. The quantum process...
Training deep learning networks is a difficult task due to computational complexity, and this is tra...